首页> 外文期刊>Journal of the American College of Surgeons >The registry case finding engine: an automated tool to identify cancer cases from unstructured, free-text pathology reports and clinical notes.
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The registry case finding engine: an automated tool to identify cancer cases from unstructured, free-text pathology reports and clinical notes.

机译:注册表病例查找引擎:一种自动工具,可从非结构化,自由文本的病理报告和临床笔记中识别出癌症病例。

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BACKGROUND: The American College of Surgeons mandates the maintenance of a cancer registry for hospitals seeking accreditation. At the University of Michigan Health System, more than 90% of all registry patients are identified by manual review, a method common to many institutions. We hypothesized that an automated computer system could accurately perform this time- and labor-intensive task. We created a tool to automatically scan free-text medical documents for terms relevant to cancer. STUDY DESIGN: We developed custom-made lists containing approximately 2,500 terms and phrases and 800 SNOMED codes. Text is processed by the Case Finding Engine (CaFE), and relevant terms are highlighted for review by a registrar and used to populate the registry database. We tested our system by comparing results from the CaFE to those by trained registrars who read through 2,200 pathology reports and marked relevant cases for the registry. The clinical documentation (eg, electronic chart notes) of an additional 476 patients was also reviewed by registrars and compared with the automated process by the CaFE. RESULTS: For pathology reports, the sensitivity for automated case identification was 100%, but specificity was 85.0%. For clinical documentation, sensitivity was 100% and specificity was 73.7%. Types of errors made by the CaFE were categorized to direct additional improvements. Use of the CaFE has resulted in a considerable increase in the number of cases added to the registry each month. CONCLUSIONS: The system has been well accepted by our registrars. CaFE can improve the accuracy and efficiency of tumor registry personnel and helps ensure that cancer cases are not overlooked.
机译:背景:美国外科医生学院(American College of Surgeons)要求为寻求认证的医院维护癌症登记册。在密歇根大学卫生系统,所有登记患者中有90%以上是通过人工检查确定的,这是许多机构通用的方法。我们假设自动化计算机系统可以准确地执行此耗时且费力的任务。我们创建了一个工具,可以自动扫描自由文本的医学文档中与癌症相关的术语。研究设计:我们开发了定制清单,其中包含大约2500个术语和短语以及800个SNOMED代码。文本由案例查找引擎(CaFE)处理,并突出显示相关术语以供注册服务商审阅,并用于填充注册数据库。我们通过将CaFE的结果与经过培训的注册服​​务机构的结果进行比较来测试我们的系统,这些注册服务机构阅读了2200份病理报告并为注册管理机构标记了相关案例。注册服务商还对另外476例患者的临床文档(例如,电子病历笔记)进行了审核,并与CaFE的自动化流程进行了比较。结果:对于病理报告,自动病例识别的敏感性为100%,但特异性为85.0%。对于临床文献,敏感性为100%,特异性为73.7%。 CaFE所犯的错误类型可进行分类,以指导其他改进。 CaFE的使用导致每月添加到注册表中的案件数量大大增加。结论:该系统已被我们的注册商所接受。 CaFE可以提高肿瘤登记人员的准确性和效率,并有助于确保不忽略癌症病例。

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